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A comprehensive reputation assessment framework for volunteered geographic information in crowdsensing applications

机译:全面的声誉评估框架,用于人群感知应用中的自愿性地理信息

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摘要

Volunteered geographic information (VGI) is the result of activities where individuals, supported by enabling technologies, behave like physical sensors by harvesting and organizing georeferenced content, usually in their surroundings. Both researchers and organizations have recognized the value of VGI content, however this content is typically heterogeneous in quality and spatial coverage. As a consequence, in order for applications to benefit from it, its quality and reliability need to be assessed in advance. This may not be easy since, typically, it is unknown how the process of collecting and organizing the VGI content has been conducted and by whom. In the literature, various proposals focus on an indirect process of quality assessment based on reputation scores. Following this perspective, the present paper provides as main contributions: (i) a multi-layer architecture for VGI which supports a process of reputation evaluation; (ii) a new comprehensive model for computing reputation scores for both VGI data and contributors, based on direct and indirect evaluations expressed by users, and including the concept of data aging; (iii) a variety of experiments evaluating the accuracy of the model. Finally, the relevance of adopting this framework is discussed via an applicative scenario for recommending tourist itineraries.
机译:自愿性地理信息(VGI)是活动的结果,在这种技术的支持下,个人通常通过在周围环境中收集和组织地理参考内容来像物理传感器一样工作。研究人员和组织都已经认识到VGI内容的价值,但是该内容在质量和空间覆盖范围上通常是异类的。因此,为了使应用程序从中受益,需要预先评估其质量和可靠性。这可能并不容易,因为通常不知道如何收集和组织VGI内容以及由谁来进行。在文献中,各种提议集中于基于声誉得分的质量评估的间接过程。根据这一观点,本论文提供了以下主要贡献:(i)支持信誉评估过程的VGI多层体系结构; (ii)一种新的综合模型,用于基于用户表达的直接和间接评估来计算VGI数据和贡献者的声誉得分,并包括数据老化的概念; (iii)各种评估模型准确性的实验。最后,通过推荐游客行程的应用场景讨论了采用此框架的相关性。

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